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Learning Point-wise Abstaining Penalty for Point Cloud Anomaly Detection

19 September 2023
Shaocong Xu
Pengfei Li
Xinyi Liu
Qianpu Sun
Yang Li
Shihui Guo
Zhen Wang
Bo Jiang
Rui Wang
Kehua Sheng
Bo Zhang
Hao Zhao
    3DPC
ArXiv (abs)PDFHTML
Abstract

LiDAR-based semantic scene understanding is an important module in the modern autonomous driving perception stack. However, identifying Out-Of-Distribution (OOD) points in a LiDAR point cloud is challenging as point clouds lack semantically rich features when compared with RGB images. We revisit this problem from the perspective of selective classification, which introduces a selective function into the standard closed-set classification setup. Our solution is built upon the basic idea of abstaining from choosing any known categories but learns a point-wise abstaining penalty with a marginbased loss. Synthesizing outliers to approximate unlimited OOD samples is also critical to this idea, so we propose a strong synthesis pipeline that generates outliers originated from various factors: unrealistic object categories, sampling patterns and sizes. We demonstrate that learning different abstaining penalties, apart from point-wise penalty, for different types of (synthesized) outliers can further improve the performance. We benchmark our method on SemanticKITTI and nuScenes and achieve state-of-the-art results. Risk-coverage analysis further reveals intrinsic properties of different methods. Codes and models will be publicly available.

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